AI for climate and weather predictions
- Typ: Praktikum (P)
- Lehrstuhl: ITI Nowack
- Semester: SS 2025
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Zeit:
Do. 24.04.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 08.05.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 15.05.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 22.05.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 05.06.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 26.06.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 03.07.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 10.07.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 17.07.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 24.07.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
Do. 31.07.2025
11:30 - 13:00, wöchentlich
50.34 Raum -109
50.34 INFORMATIK, Kollegiengebäude am Fasanengarten (1. Untergeschoss)
- Dozent: TT-Prof. Dr. Peer Nowack
- SWS: 3
- LVNr.: 2400082
- Hinweis: Präsenz
Inhalt | Content: Students will learn how to work with state-of-the-art AI models for climate science and weather forecasting. For example, typical AI models will include recent releases of · Foundation models for climate science and weather forecasting. · Generative AI models for tasks such as ensemble generation of weather forecasts and of climate change simulations for uncertainty quantification. · Transformer and graph neural network models for weather forecasting. · Climate model emulators. Each student will be able to select from a variety of topics to explore in their practical experiments. These could include, but are not limited to: · The representation of physical concepts in data-driven AI models (e.g., does the model indirectly learn to “understand physics”?). · Detecting and understanding failure modes of AI models. · Forecast accuracy and uncertainty quantification for AI-generated ensembles of simulations. · Effective solutions to post-processing AI results and/or to modifying AI model architectures. · Assessing if certain AI architectures perform significantly better for specific tasks. Workload: In-person introductory session, individual and group meetings, final presentation sessions: 30h Practical tasks – getting started, implementation, experiments, analysis: 100h Write up results in the style of a scientific paper and preparation of final presentation: 50h
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Vortragssprache | Englisch |